2021 Annual Meeting
(549e) Learning Coarse-Scale ODEs/PDEs from Microscopic Data: What and How Can We Learn It from Data?
Authors
Nowadays, thanks to the advances in machine learning techniques and data-driven modeling, we are able to effectively identify ODEs/PDEs from data directly without prior knowledge. To this end, the prerequisite for learning data-driven ODEs/PDEs will gradually evolve from the classical, mechanistic/physics based prerequisite courses in chemical engineering to include advanced statistics, machine learning techniques, and data mining. In this talk, we present some machine learning techniques of data-driven ODE/PDEs from microscopic data us (e.g. the use of ordinary neural network [1], Gaussian process [2], or ResNet [3]) Through these examples, we illustrate the concept of the black-box model and the (partially physics informed) gray box model to identify/explain model ODE/PDE. Moreover, we present a new challenge in data-driven ODE/PDE: (1) how to choose the right variables from data, (2) how to construct a proper data-driven model, and (3) what are the pros and cons for different approaches. Finally, this presentation will suggest a new direction for a future curriculum for data-driven modeling in chemical engineering.
[1]Chen, R.T., Rubanova, Y., Bettencourt, J. and Duvenaud, D., 2018. Neural ordinary differential equations. arXiv preprint arXiv:1806.07366.
[2] Lee, S., Kooshkbaghi, M., Spiliotis, K., Siettos, C.I. and Kevrekidis, I.G., 2020. Coarse-scale PDEs from fine-scale observations via machine learning. Chaos: An Interdisciplinary Journal of Nonlinear Science, 30(1), p.013141.
[3] Qin, T., Wu, K. and Xiu, D., 2019. Data driven governing equations approximation using deep neural networks. Journal of Computational Physics, 395, pp.620-635.